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mlops
Here are 474 public repositories matching this topic...
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Thank you for this great tool!
[Describe the bug
A clear and concise description of what the bug is.]
Broken link in the automatically generated Edit Your Expectation Suite starter noteboook: https://docs.greatexpectations.io/en/latest/autoapi/great_expectations/data_asset/index.html?highlight=remove_expectation&utm_source=notebook&utm_medium=edit_expectations#great_expectations.data_
With a config like this
{
"METAFLOW_DATASTORE_SYSROOT_S3": "s3://mf-test/metaflow/",
}
(note a slash after METAFLOW_DATASTORE_SYSROOT_S3)
metaflow.S3(run=self).put* produces double-slashes like here:
s3://mf-test/metaflow//data/DataLoader/1630978962283843/month=01/data.parquet
The trailing slash in the config shouldn't make a difference
Description
We're running usability tests and would love for you to record walking through our tutorials. The idea for this ticket is that you do a screen capture walking through one of more of the following examples:
- Hello World! (15 minutes)
- [Iris Dataset](https://kedro.readthedocs.io/en/stable/02_get_started
🚨 🚨 Feature Request
- Related to an existing Issue
- A new implementation (Improvement, Extension)
If your feature will improve HUB
Need a way to check if a dataset already exists.
hub.empty throws an error if a dataset exists and hub.load throws an error if the dataset does not exist.
Need a way to check if a dataset already exists without throwing a
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Nov 24, 2021 - Python
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Nov 23, 2021 - Python
For SC Operator it may be a good idea to generate CRD manifests from inside a docker container.
This should provide reproducible generation step and avoid "produces different output on my machine" issues.
Linter should also fail if generation of manifests produce diff with the commited version.
What steps did you take
Code gets stuck in infinite loop is SageMaker training job gets stopped (unhandled use case)
What happened:
Above code only caters for training job status Completed or Failed, so if the training job status is marked as `Stopped
Expected Behavior
ODFV logic should not trigger when there are no ODFVs.
Current Behavior
ODFV logic still triggers.
Steps to reproduce
Specifications
- Version:
- Platform:
- Subsystem:
Possible Solution
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Nov 23, 2021 - Go
Describe the bug
flytectl register files command doesn't fail without --countinueOnError. It should fail with exit code 0.
Expected behavior
- Flytectl register should fail if there is an error
- Flytectl register should not fail if the user passes the
--countinueOnError
Additional context to reproduce
No response
Screenshots
No response
Are
Need to make utilities in aim/sdk/num_utils.py to treat as numeric values the following types:
numpy.ndarraywith shape(1,).- subclasses of
numpy.number. - tensor for scalar values (
tensorflow,torch).
Change Run.track() method to not allow values which are not numeric values nor AimObject.
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Nov 22, 2021 - Jupyter Notebook
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Nov 22, 2021 - Kotlin
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C# Library
This issue tracks adding a library for C#.
Java Library
hdf5 file support
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Nov 5, 2021 - Python
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Oct 23, 2021 - Jupyter Notebook
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Nov 22, 2021
The load_dotted_path raises the following error if unable to load the module:
Traceback (most recent call last):
File "/Users/Edu/Desktop/import-error/script.py", line 4, in <module>
load_dotted_path('tests.quality.fn')
File "/Users/Edu/dev/ploomber/src/ploomber/util/dotted_path.py", line 128, in load_dotted_path
module = importlib.import_module(mod)
File "/Users/-
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Oct 27, 2021 - Python
We're using marshmallow to parse whylogs config from YAML
However, Pydantic is much more powerful as it allows users to set config via various mechanims, from YAML, JSON to Environment settings.
We should consider moving to pydantic
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